Predictive Modeling of Foreign Exchange Trading Signals Using Machine Learning Techniques

48 Pages Posted: 17 Jun 2024

See all articles by Sugarbayar Enkhbayar

Sugarbayar Enkhbayar

The Quantitative Finance Research Group at the University of Warsaw

Robert Ślepaczuk

University of Warsaw - Faculty of Economic Sciences

Date Written: June 12, 2024

Abstract

This study aimed to apply the algorithmic trading strategy on major foreign exchange pairs and compare the performances of machine learning-based strategies and traditional trend-following strategies with benchmark strategies. It differs from other studies in that it considered a wide variety of cases including different foreign exchange pairs, return methods, data frequency, and individual and integrated trading strategies. Ridge regression, KNN, RF, XGBoost, GBDT, ANN, LSTM, and GRU models were used for the machine learning-based strategy, while the MA cross strategy was employed for the trend-following strategy. Backtests were performed on 6 major pairs in the period from January 1, 2000, to June 30, 2023, and daily, and intraday data were used. The Sharpe ratio was considered as a metric used to refer to economic significance, and the independent t-test was used to determine statistical significance. The general findings of the study suggested that the currency market has become more efficient. The rise in efficiency is probably caused by the fact that more algorithms are being used in this market, and information spreads much faster. Instead of finding one trading strategy that works well on all major foreign exchange pairs, our study showed it's possible to find an effective algorithmic trading strategy that generates a more effective trading signal in each specific case.

Keywords: machine learning, algorithmic trading, foreign exchange market, rolling walkforward optimization, technical indicators C4

JEL Classification: C4, C14, C45, C58, G13

Suggested Citation

Enkhbayar, Sugarbayar and Ślepaczuk, Robert, Predictive Modeling of Foreign Exchange Trading Signals Using Machine Learning Techniques (June 12, 2024). Available at SSRN: https://ssrn.com/abstract=4862571 or http://dx.doi.org/10.2139/ssrn.4862571

Sugarbayar Enkhbayar

The Quantitative Finance Research Group at the University of Warsaw ( email )

Dluga Street 44/50
Warsaw, WA Warsaw 00-241
Poland
505719926 (Phone)

Robert Ślepaczuk (Contact Author)

University of Warsaw - Faculty of Economic Sciences ( email )

Dluga Street 44/50
Warsaw, 00-241
Poland

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